基于行为检测的无参数学习算法

Canyong Wang, Yaokai Feng, Junpei Kawamoto, Y. Hori, K. Sakurai
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引用次数: 1

摘要

近年来,尽管网络安全学界提出了许多避免和检测网络攻击的方法,但网络攻击的频率和造成的损害程度实际上都在大幅增加。因此,如何快速检测实际或潜在的攻击已成为一个迫切需要解决的问题。在检测策略中,基于行为的检测策略是利用从参考数据(如历史流量)中学习到的正常访问模式来检测新的攻击,受到了许多研究人员的关注。在所有这些策略中,学习算法是必要的,并且起着关键作用。显然,学习算法能否正确提取正常行为模式直接影响检测结果。然而,在现有的学习算法中,有些参数需要提前确定,这在很多实际应用中是不容易的,甚至是不可行的。例如,即使在最新的学习算法中,也就是本研究中的FHST学习算法中,也使用了两个参数,而且很难提前确定。在本研究中,我们首次提出了一种不使用参数的无参数学习算法。实验验证了该方法的有效性。虽然本研究提出的学习算法是为检测端口扫描而设计的,但它显然可以用于其他基于行为的检测。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A Parameterless Learning Algorithm for Behavior-Based Detection
The frequency and the extent of damages caused by network attacks have been actually increasing greatly in recent years, although many approaches to avoiding and detecting attacks have been proposed in the community of network security. Thus, how to fast detect actual or potential attacks has become an urgent issue. Among the detection strategies, behavior-based ones, which use normal access patterns learned from reference data (e.g., History traffic) to detect new attacks, have attracted attention from many researchers. In each of all such strategies, a learning algorithm is necessary and plays a key role. Obviously, whether the learning algorithm can extract the normal behavior modes properly or not directly influence the detection result. However, some parameters have to determine in advance in the existing learning algorithms, which is not easy, even not feasible, in many actual applications. For example, even in the newest learning algorithm, which called FHST learning algorithm in this study, two parameters are used and they are difficult to be determined in advance. In this study, we propose a parameter less learning algorithm for the first time, in which no parameters are used. The efficiency of our proposal is verified by experiment. Although the proposed learning algorithm in this study is designed for detecting port scans, it is obviously able to be used to other behavior-based detections.
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